- Deep Learning Quick Reference
- Mike Bernico
- 123字
- 2021-06-24 18:40:02
To get the most out of this book
- I assume that you're already experienced with more traditional data science and predictive modeling techniques such as Linear/Logistic Regression and Random Forest. If this is your first experience with machine learning, this may be a little difficult for you.
- I also assume that you have at least some experience in programming with Python, or at least another programming language such as Java or C++.
- Deep learning is computationally intensive, and some of the models we build here require an NVIDIA GPU to run in a reasonable amount of time. If you don't own a fast GPU, you may wish to use a GPU-based cloud instance on either Amazon Web Services or Google Cloud Platform.
推薦閱讀
- Hands-On Intelligent Agents with OpenAI Gym
- Hands-On Internet of Things with MQTT
- 大數據專業英語
- Ansible Quick Start Guide
- 空間機器人遙操作系統及控制
- 計算機應用復習與練習
- 工業機器人入門實用教程(KUKA機器人)
- Apache Spark Deep Learning Cookbook
- AutoCAD 2012中文版繪圖設計高手速成
- 工業機器人操作與編程
- 邊緣智能:關鍵技術與落地實踐
- Visual Studio 2010 (C#) Windows數據庫項目開發
- 水晶石影視動畫精粹:After Effects & Nuke 影視后期合成
- 單片機技術項目化原理與實訓
- 軟測之魂